volksdep 
 Model accelerator
 A toolbox for deploying and accelerating machine learning models on various hardware platforms using TensorRT
volksdep is an open-source toolbox for deploying and accelerating PyTorch, ONNX and TensorFlow models with TensorRT.
286 stars
 10 watching
 43 forks
 
Language: Python 
last commit: over 4 years ago   accelerationdeployinferencejetson-nanojetson-tx2jetson-xavierkerasonnxpythonpytorchtensorflowtensorrt 
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